中科院自动化所国家模式识别重点实验室
纸质出版:1997
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[1]黄德双.线性监督分类器的瓶颈与能力[J].电子学报,1997(07):63-67.
黄德双. The Bottleneck and Capabilities of Linear Supervised Classifiers[J]. Acta Electronica Sinica, 1997, (7).
本文研究了线性前馈网络用于监督分类的瓶颈问题,证明隐层节点数小于内间散布矩阵秩的所有网络,其隐层都可以实现前级模式的Fisher线性变换,并揭示了这种分类器出现瓶颈的原因和解决办法.最后,作为这种分类器能力探讨之一,提出了将其用于解决非奇异矩阵求逆问题,所给算例表明,所提线性求道网络是非常有效的.
This paper investgates th“bottleneck”problems about linear feed forward network classifiers (LFNC) for supervised learning. It is proved that some hidden layer in the LFNC with hidden node number less than the rank of the within dispersion matrix can do the Fisher linear transformation of the pattern samples from the previous layer
and the mechanism of producing bottleneck in the linear classifiers is disclosed and the method to solve it is presented. Finally
as an approach to capabilities of suth classifiers
it is propose applying the linear supervised classifiers to solving the inversion of nonsingular matrix. The computation results of two given examples show that the method to apply the linear supervised network to the inversion of nonsingular matrix is very effective.
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